AggregateNet: A deep learning model for automated classification of cervical vertebrae maturation stages

Author:

Atici Salih Furkan1ORCID,Ansari Rashid1ORCID,Allareddy Veerasathpurush2ORCID,Suhaym Omar34,Cetin Ahmet Enis1,Elnagar Mohammed H.2ORCID

Affiliation:

1. Department of Electrical and Computer Engineering University of Illinois Chicago Chicago Illinois USA

2. Department of Orthodontics, College of Dentistry University of Illinois Chicago Chicago Illinois USA

3. Department of Oral and Maxillofacial Surgery, College of Dentistry University of Illinois Chicago Chicago Illinois USA

4. King Saud Bin Abdulaziz University for Health Sciences Riyadh Saudi Arabia

Abstract

AbstractObjectiveA study of supervised automated classification of the cervical vertebrae maturation (CVM) stages using deep learning (DL) network is presented. A parallel structured deep convolutional neural network (CNN) with a pre‐processing layer that takes X‐ray images and the age as the input is proposed.MethodsA total of 1018 cephalometric radiographs were labelled and classified according to the CVM stages. The images were separated according to gender for better model‐fitting. The images were cropped to extract the cervical vertebrae automatically using an object detector. The resulting images and the age inputs were used to train the proposed DL model: AggregateNet with a set of tunable directional edge enhancers. After the features of the images were extracted, the age input was concatenated to the output feature vector. To have the parallel network not overfit, data augmentation was used. The performance of our CNN model was compared with other DL models, ResNet20, Xception, MobileNetV2 and custom‐designed CNN model with the directional filters.ResultsThe proposed innovative model that uses a parallel structured network preceded with a pre‐processing layer of edge enhancement filters achieved a validation accuracy of 82.35% in CVM stage classification on female subjects, 75.0% in CVM stage classification on male subjects, exceeding the accuracy achieved with the other DL models investigated. The effectiveness of the directional filters is reflected in the improved performance attained in the results. If AggregateNet is used without directional filters, the test accuracy decreases to 80.0% on female subjects and to 74.03% on male subjects.ConclusionAggregateNet together with the tunable directional edge filters is observed to produce higher accuracy than the other models that we investigated in the fully automated determination of the CVM stages.

Funder

American Association of Orthodontists Foundation

Publisher

Wiley

Subject

Otorhinolaryngology,Oral Surgery,Surgery,Orthodontics

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